Jaypee University of Information Technology, Solan, Himachal Pradesh, India.
Centre for Agricultural Bioinformatics, ICAR-Indian Agricultural Statistics Research Institute, New Delhi, India.
Probiotics Antimicrob Proteins. 2016 Sep;8(3):141-9. doi: 10.1007/s12602-016-9215-0.
Microbial diseases in fish, plant, animal and human are rising constantly; thus, discovery of their antidote is imperative. The use of antibiotic in aquaculture further compounds the problem by development of resistance and consequent consumer health risk by bio-magnification. Antimicrobial peptides (AMPs) have been highly promising as natural alternative to chemical antibiotics. Though AMPs are molecules of innate immune defense of all advance eukaryotic organisms, fish being heavily dependent on their innate immune defense has been a good source of AMPs with much wider applicability. Machine learning-based prediction method using wet laboratory-validated fish AMP can accelerate the AMP discovery using available fish genomic and proteomic data. Earlier AMP prediction servers are based on multi-phyla/species data, and we report here the world's first AMP prediction server in fishes. It is freely accessible at http://webapp.cabgrid.res.in/fishamp/ . A total of 151 AMPs related to fish collected from various databases and published literature were taken for this study. For model development and prediction, N-terminus residues, C-terminus residues and full sequences were considered. Best models were with kernels polynomial-2, linear and radial basis function with accuracy of 97, 99 and 97 %, respectively. We found that performance of support vector machine-based models is superior to artificial neural network. This in silico approach can drastically reduce the time and cost of AMP discovery. This accelerated discovery of lead AMP molecules having potential wider applications in diverse area like fish and human health as substitute of antibiotics, immunomodulator, antitumor, vaccine adjuvant and inactivator, and also for packaged food can be of much importance for industries.
鱼类、植物、动物和人类的微生物疾病不断增加;因此,发现它们的解毒剂是当务之急。抗生素在水产养殖中的使用进一步加剧了这个问题,因为抗生素的耐药性发展导致了消费者健康风险的生物放大。抗菌肽 (AMPs) 作为化学抗生素的替代品,具有很高的应用前景。尽管 AMPs 是所有高等真核生物固有免疫防御的分子,但鱼类严重依赖其固有免疫防御,因此成为 AMPs 的良好来源,具有更广泛的适用性。基于机器学习的预测方法使用经过湿实验室验证的鱼类 AMP 可以加速利用现有鱼类基因组和蛋白质组数据发现 AMP。早期的 AMP 预测服务器基于多门/物种数据,我们在这里报告了世界上第一个鱼类 AMP 预测服务器。它可以在 http://webapp.cabgrid.res.in/fishamp/ 免费访问。这项研究共收集了来自不同数据库和已发表文献的 151 种与鱼类相关的 AMP。为了进行模型开发和预测,考虑了 N 端残基、C 端残基和全长序列。最佳模型的核函数分别为多项式-2、线性和径向基函数,准确率分别为 97%、99%和 97%。我们发现支持向量机模型的性能优于人工神经网络。这种计算方法可以大大缩短 AMP 发现的时间和成本。这种加速发现具有潜在广泛应用的先导 AMP 分子的方法,如抗生素替代品、免疫调节剂、抗肿瘤、疫苗佐剂和灭活剂,以及包装食品,对工业来说非常重要。